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Bibliographic Details
Main Authors: Cui, Christopher Z., Peng, Xiangyu, Riedl, Mark O.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.06059
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author Cui, Christopher Z.
Peng, Xiangyu
Riedl, Mark O.
author_facet Cui, Christopher Z.
Peng, Xiangyu
Riedl, Mark O.
contents Open-ended worlds are those in which there are no pre-specified goals or environmental reward signal. As a consequence, an agent must know how to perform a multitude of tasks. However, when a new task is presented to an agent, we expect it to be able to reuse some of what it knows from previous tasks to rapidly learn that new task. We introduce a novel technique whereby policies for different a priori known tasks are combined into a Mixture-of-Experts model with an attention mechanism across a mix of frozen and unfrozen experts. The model learns when to attend to frozen task-specific experts when appropriate and learns new experts to handle novel situations. We work in an open-ended text-based environment in which the agent is tasked with behaving like different types of character roles and must rapidly learn behaviors associated with new character role types. We show that our agent both obtains more rewards in the zero-shot setting, and discovers these rewards with greater sample efficiency in the few-shot learning settings.
format Preprint
id arxiv_https___arxiv_org_abs_2405_06059
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Mixture-of-Experts Approach to Few-Shot Task Transfer in Open-Ended Text Worlds
Cui, Christopher Z.
Peng, Xiangyu
Riedl, Mark O.
Computation and Language
Artificial Intelligence
Open-ended worlds are those in which there are no pre-specified goals or environmental reward signal. As a consequence, an agent must know how to perform a multitude of tasks. However, when a new task is presented to an agent, we expect it to be able to reuse some of what it knows from previous tasks to rapidly learn that new task. We introduce a novel technique whereby policies for different a priori known tasks are combined into a Mixture-of-Experts model with an attention mechanism across a mix of frozen and unfrozen experts. The model learns when to attend to frozen task-specific experts when appropriate and learns new experts to handle novel situations. We work in an open-ended text-based environment in which the agent is tasked with behaving like different types of character roles and must rapidly learn behaviors associated with new character role types. We show that our agent both obtains more rewards in the zero-shot setting, and discovers these rewards with greater sample efficiency in the few-shot learning settings.
title A Mixture-of-Experts Approach to Few-Shot Task Transfer in Open-Ended Text Worlds
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2405.06059